Deterministic sensitivity analyses (DSA) remain important to interpret the effect of uncertainties in individual parameters on results of cost-effectiveness analyses. Classic DSA methodologies may lead to wrong conclusions due to a lack of or misleading information regarding marginal effects, non-linearity, likelihood and correlations. In addition, tornado diagrams are misleading in some situations. Recent advances in DSA methods have the potential to provide decision makers with more reliable information regarding the effects of uncertainties in individual parameters. This practical application discusses advances to classic DSA methods and their implications. Three methods are discussed: stepwise DSA, distributional DSA and probabilistic D...
Sensitivity analysis is an essential step in the utilization of models by managers and decision-make...
Although uncertainty in input factor distributions is known to affect sensitivity analysis (SA) resu...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
Deterministic sensitivity analyses (DSA) remain important to interpret the effect of uncertainties i...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Sensitivity analysis in investment problems is an important tool to determine which factors can jeop...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Probabilistic sensitivity analysis (PSA) demonstrates the parameter uncertainty in a decision proble...
Probabilistic sensitivity analysis (PSA) demonstrates the parameter uncertainty in a decision proble...
<p>Deterministic sensitivity analysis: Results of the 7 alternative scenarios tested.</p
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
The solution of several operations research problems requires the creation of a quantitative model. ...
With public health policy increasingly relying on mathematical models to provide insights about the ...
Sensitivity analysis studies how the variation in the numerical output of a model can be quantitativ...
Sensitivity analysis plays a critical role in quantifying uncertainty in the design of engineering s...
Sensitivity analysis is an essential step in the utilization of models by managers and decision-make...
Although uncertainty in input factor distributions is known to affect sensitivity analysis (SA) resu...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...
Deterministic sensitivity analyses (DSA) remain important to interpret the effect of uncertainties i...
Over the last decade or so, there have been many developments in methods to handle uncertainty in co...
Sensitivity analysis in investment problems is an important tool to determine which factors can jeop...
Decision-analytic models are frequently used to evaluate the relative costs and benefits of alternat...
Probabilistic sensitivity analysis (PSA) demonstrates the parameter uncertainty in a decision proble...
Probabilistic sensitivity analysis (PSA) demonstrates the parameter uncertainty in a decision proble...
<p>Deterministic sensitivity analysis: Results of the 7 alternative scenarios tested.</p
Probabilistic sensitivity analysis has previously been described for the special case of dichotomous...
The solution of several operations research problems requires the creation of a quantitative model. ...
With public health policy increasingly relying on mathematical models to provide insights about the ...
Sensitivity analysis studies how the variation in the numerical output of a model can be quantitativ...
Sensitivity analysis plays a critical role in quantifying uncertainty in the design of engineering s...
Sensitivity analysis is an essential step in the utilization of models by managers and decision-make...
Although uncertainty in input factor distributions is known to affect sensitivity analysis (SA) resu...
Existing guidelines for impact assessment recommend that mathematical modelling of real or man-made ...